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Time series clustering based on forecast densities

机译:基于预测密度的时间序列聚类

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摘要

A new clustering method for time series is proposed, based on the full probability density of the forecasts. First, a resampling method combined with a nonparametric kernel estimator provides estimates of the forecast densities. A measure of discrepancy is then defined between these estimates and the resulting dissimilarity matrix is used to carry out the required cluster analysis. Applications of this method to both simulated and real life data sets are discussed.
机译:基于预测的全部概率密度,提出了一种新的时间序列聚类方法。首先,与非参数核估计器结合的重采样方法可提供预测密度的估计。然后在这些估计之间定义差异的度量,并使用所得的相异度矩阵进行所需的聚类分析。讨论了该方法在模拟数据集和实际数据集上的应用。

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